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import gc |
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import os |
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import re |
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import torch |
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import torch.distributed as dist |
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from packaging import version |
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from craftsman.utils.config import config_to_primitive |
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from craftsman.utils.typing import * |
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def parse_version(ver: str): |
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return version.parse(ver) |
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def get_rank(): |
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rank_keys = ("RANK", "LOCAL_RANK", "SLURM_PROCID", "JSM_NAMESPACE_RANK") |
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for key in rank_keys: |
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rank = os.environ.get(key) |
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if rank is not None: |
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return int(rank) |
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return 0 |
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def get_world_size(): |
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world_size_keys = ("WORLD_SIZE", "SLURM_NTASKS", "JSM_NAMESPACE_SIZE") |
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for key in world_size_keys: |
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world_size = os.environ.get(key) |
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if world_size is not None: |
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return int(world_size) |
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return 1 |
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def get_device(): |
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return torch.device(f"cuda:{get_rank()}") |
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def load_module_weights( |
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path, module_name=None, ignore_modules=None, map_location=None |
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) -> Tuple[dict, int, int]: |
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if module_name is not None and ignore_modules is not None: |
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raise ValueError("module_name and ignore_modules cannot be both set") |
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if map_location is None: |
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map_location = get_device() |
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ckpt = torch.load(path, map_location=map_location) |
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state_dict = ckpt["state_dict"] |
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state_dict_to_load = state_dict |
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if ignore_modules is not None: |
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state_dict_to_load = {} |
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for k, v in state_dict.items(): |
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ignore = any( |
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[k.startswith(ignore_module + ".") for ignore_module in ignore_modules] |
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) |
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if ignore: |
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continue |
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state_dict_to_load[k] = v |
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if module_name is not None: |
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state_dict_to_load = {} |
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for k, v in state_dict.items(): |
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m = re.match(rf"^{module_name}\.(.*)$", k) |
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if m is None: |
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continue |
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state_dict_to_load[m.group(1)] = v |
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return state_dict_to_load, ckpt["epoch"], ckpt["global_step"] |
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def C(value, epoch: int, global_step: int) -> float: |
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if isinstance(value, int) or isinstance(value, float): |
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pass |
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else: |
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value = config_to_primitive(value) |
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if not isinstance(value, list): |
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raise TypeError("Scalar specification only supports list, got", type(value)) |
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if len(value) == 3: |
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value = [0] + value |
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assert len(value) == 4 |
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start_step, start_value, end_value, end_step = value |
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if isinstance(end_step, int): |
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current_step = global_step |
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value = start_value + (end_value - start_value) * max( |
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min(1.0, (current_step - start_step) / (end_step - start_step)), 0.0 |
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) |
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elif isinstance(end_step, float): |
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current_step = epoch |
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value = start_value + (end_value - start_value) * max( |
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min(1.0, (current_step - start_step) / (end_step - start_step)), 0.0 |
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) |
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return value |
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def cleanup(): |
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gc.collect() |
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torch.cuda.empty_cache() |
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tcnn.free_temporary_memory() |
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def finish_with_cleanup(func: Callable): |
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def wrapper(*args, **kwargs): |
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out = func(*args, **kwargs) |
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cleanup() |
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return out |
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return wrapper |
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def _distributed_available(): |
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return torch.distributed.is_available() and torch.distributed.is_initialized() |
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def barrier(): |
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if not _distributed_available(): |
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return |
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else: |
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torch.distributed.barrier() |
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def broadcast(tensor, src=0): |
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if not _distributed_available(): |
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return tensor |
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else: |
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torch.distributed.broadcast(tensor, src=src) |
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return tensor |
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def enable_gradient(model, enabled: bool = True) -> None: |
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for param in model.parameters(): |
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param.requires_grad_(enabled) |
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def all_gather_batch(tensors): |
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""" |
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Performs all_gather operation on the provided tensors. |
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""" |
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world_size = get_world_size() |
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if world_size == 1: |
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if isinstance(tensors, list): |
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return tensors |
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return tensors |
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if not isinstance(tensors, list): |
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is_list = False |
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tensors = [tensors] |
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else: |
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is_list = True |
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output_tensor = [] |
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tensor_list = [] |
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for tensor in tensors: |
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tensor_all = [torch.ones_like(tensor) for _ in range(world_size)] |
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dist.all_gather( |
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tensor_all, |
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tensor, |
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async_op=False |
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) |
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tensor_list.append(tensor_all) |
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for tensor_all in tensor_list: |
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output_tensor.append(torch.cat(tensor_all, dim=0)) |
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if not is_list: |
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return output_tensor[0] |
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return output_tensor |